La source de mon module 'pyfade' disponible sur Pypi.

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Deep Learningpyfade
Overview

Version: 1.2

Introduction

Pyfade est un module permettant de créer des dégradés colorés. Il vous permettra de changer chaque ligne de votre texte par une couleur différente respectant le dégradé demandé.

Installation

Vous pouvez installer Pyfade à l’aide du Python Package Index (PyPI).

Installation avec pip :

$ pip install pyfade

Exemples

Voici un exemple permettant d'afficher un dégradé avec PyFade:

Aperçu :

Documentation

Fade :

La class Fade comporte actuellement une fonction :

Fade.Vertical(color, text)

Cette fonction permet de faire un dégradé vertical.

Colors :

La class Colors comporte une multitude d’objets :

Colors.

Les couleurs disponibles :

black_to_white white_to_black blue_to_green blue_to_red blue_to_green_reversed blue_to_red_reversed green_to_blue green_to_blue_reversed green_to_red green_to_red_reversed red_to_blue red_to_blue_reversed red_to_green red_to_green_reversed

Il est possible de regrouper toutes les couleurs disponibles à l’aide de :

Colors.all_colors

Développé par billythegoat356

Rédigé par Xvirus9#0001

Owner
Billy
14 ans, apprend le développement et la cybersécurité.
Billy
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